Publication

Adaptive Human-Robot Collaboration: evolutionary learning of action costs using an action outcome simulator

Conference Article

Conference

IEEE International Symposium on Robot and Human Interactive Communication (RO-MAN)

Edition

32nd

Pages

1901-1907

Doc link

http://dx.doi.org/10.1109/RO-MAN57019.2023.10309411

File

Download the digital copy of the doc pdf document

Abstract

One of the main challenges for successful human- robot collaborative applications lies in adapting the plan to the human agent’s changing state and preferences. A promising solution is to bridge the gap between agent modelling and AI task planning, which can be done by integrating the agent state as action costs in the task planning domain. This allows for the plan to be adapted to different partners, by influencing the action allocation. The difficulty then lies in setting appropriate action costs. This paper presents a novel framework to learn a set of planning action costs considering the preferred actions for an agent based on their state. An evolutionary optimisation algorithm is used for this purpose, and an action outcome simulator is developed to act as the black-box function, based on both an agent model and an action type model. This addresses the challenge of collecting data in HRC real-world scenarios, accelerating the learning for posterior fine-tuning in real applications. The coherence of the models and the simulator is proven through a conducted survey, and the learning algorithm is shown to learn appropriate action costs, producing plans that satisfy both the agents’ preferences and the prioritised plan requisites. The resulting system is a generic learning framework integrating components that can be easily extended to a wide range of applications, models and planning formalisms.

Categories

artificial intelligence, planning (artificial intelligence), robots, social aspects of automation.

Scientific reference

S. Izquierdo, G. Alenyà and C. Rizzo. Adaptive Human-Robot Collaboration: evolutionary learning of action costs using an action outcome simulator, 32nd IEEE International Symposium on Robot and Human Interactive Communication, 2023, Busan, Korea, pp. 1901-1907.